Selection bias in gene extraction on the basis of microarray gene-expression data

被引:988
|
作者
Ambroise, C
McLachlan, GJ [1 ]
机构
[1] Univ Queensland, Dept Math, Brisbane, Qld 4072, Australia
[2] CNRS, UMR 6599, Lab Heudiasyc, F-60200 Compiegne, France
关键词
D O I
10.1073/pnas.102102699
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
In the context of cancer diagnosis and treatment, we consider the problem of constructing an accurate prediction rule on the basis of a relatively small number of tumor tissue samples of known type containing the expression data on very many (possibly thousands) genes. Recently, results have been presented in the literature suggesting that it is possible to construct a prediction rule from only a few genes such that it has a negligible prediction error rate. However, in these results the test error or the leave-one-out cross-validated error is calculated without allowance for the selection bias. There is no allowance because the rule is either tested on tissue samples that were used in the first instance to select the genes being used in the rule or because the cross-validation of the rule is not external to the selection process; that is, gene selection is not performed in training the rule at each stage of the cross-validation process. We describe how in practice the selection bias can be assessed and corrected for by either performing a cross-validation or applying the bootstrap external to the selection process. We recommend using 10-fold rather than leave-one-out cross-validation, and concerning the bootstrap, we suggest using the so-called. 632+ bootstrap error estimate designed to handle overfitted prediction rules. Using two published data sets, we demonstrate that when correction is made for the selection bias, the cross-validated error is no longer zero for a subset of only a few genes.
引用
收藏
页码:6562 / 6566
页数:5
相关论文
共 50 条
  • [31] A New Hybrid Cuckoo Search Algorithm for Biclustering of Microarray Gene-Expression Data
    Balamurugan, R.
    Natarajan, A. M.
    Premalatha, K.
    APPLIED ARTIFICIAL INTELLIGENCE, 2018, 32 (7-8) : 644 - 659
  • [32] Fuzzy-granular gene selection from microarray expression data
    He, Yuanchen
    Tang, Yuchun
    Zhang, Yan-Qing
    Sunderraman, Rajshekhar
    ICDM 2006: SIXTH IEEE INTERNATIONAL CONFERENCE ON DATA MINING, WORKSHOPS, 2006, : 153 - 157
  • [33] Phylogenetic modeling of heterogeneous gene-expression microarray data from cancerous specimens
    Abu-Asab, Mones S.
    Chaouchi, Mohamed
    Amri, Hakima
    OMICS-A JOURNAL OF INTEGRATIVE BIOLOGY, 2008, 12 (03) : 183 - 199
  • [34] Incremental forward feature selection with application to microarray gene expression data
    Lee, Yuh-Jye
    Chang, Chien-Chung
    Chao, Chia-Huang
    JOURNAL OF BIOPHARMACEUTICAL STATISTICS, 2008, 18 (05) : 827 - 840
  • [35] Gene selection for tumor classification using microarray gone expression data
    Yendrapalli, K.
    Basnet, R.
    Mukkamala, S.
    Sung, A. H.
    WORLD CONGRESS ON ENGINEERING 2007, VOLS 1 AND 2, 2007, : 290 - +
  • [36] Minimum redundancy feature selection from microarray gene expression data
    Ding, C
    Peng, HC
    PROCEEDINGS OF THE 2003 IEEE BIOINFORMATICS CONFERENCE, 2003, : 523 - 528
  • [37] Exploiting gene-expression data
    Liszewski, Kathy
    Genetic Engineering and Biotechnology News, 2012, 32 (07): : 30 - 32
  • [38] Exploiting Gene-Expression Data
    Liszewski, Kathy
    GENETIC ENGINEERING & BIOTECHNOLOGY NEWS, 2012, 32 (07): : 1 - +
  • [39] An expert system to classify microarray gene expression data using gene selection by decision tree
    Horng, Jorng-Tzong
    Wu, Li-Cheng
    Liu, Baw-Juine
    Kuo, Jun-Li
    Kuo, Wen-Horng
    Zhang, Jin-Jian
    EXPERT SYSTEMS WITH APPLICATIONS, 2009, 36 (05) : 9072 - 9081
  • [40] New Gene Selection Method Using Gene Expression Programing Approach on Microarray Data Sets
    Alanni, Russul
    Hou, Jingyu
    Azzawi, Hasseeb
    Xiang, Yong
    COMPUTER AND INFORMATION SCIENCE (ICIS 2018), 2019, 791 : 17 - 31